Wang Keran, Hou Wenjun, Ma Huiwen, Hong Leyi
School of Intelligent Engineering and Automation, Beijing University of Posts and Telecommunications, No. 1 Nanfeng Road, Shahe Higher Education Park, Shahe Area, Changping District, Beijing 102206, China.
School of Digital Media & Design Arts, Beijing University of Posts and Telecommunications, No. 10 Xitucheng Road, Beijing 100876, China.
Sensors (Basel). 2024 Dec 12;24(24):7946. doi: 10.3390/s24247946.
Trust is a crucial human factor in automated supervisory control tasks. To attain appropriate reliance, the operator's trust should be calibrated to reflect the system's capabilities. This study utilized eye-tracking technology to explore novel approaches, given the intrusive, subjective, and sporadic characteristics of existing trust measurement methods. A real-world scenario of alarm state discrimination was simulated and used to collect eye-tracking data, real-time interaction data, system log data, and subjective trust scale values. In the data processing phase, a dynamic prediction model was hypothesized and verified to deduce and complete the absent scale data in the time series. Ultimately, through eye tracking, a discriminative regression model for trust calibration was developed using a two-layer Random Forest approach, showing effective performance. The findings indicate that this method may evaluate the trust calibration state of operators in human-agent collaborative teams within real-world settings, offering a novel approach to measuring trust calibration. Eye-tracking features, including saccade duration, fixation duration, and the saccade-fixation ratio, significantly impact the assessment of trust calibration status.
信任是自动监督控制任务中的一个关键人为因素。为了获得适当的信赖,操作员的信任应该进行校准,以反映系统的能力。鉴于现有信任测量方法具有侵入性、主观性和分散性的特点,本研究利用眼动追踪技术探索新的方法。模拟了一个报警状态判别真实场景,并用于收集眼动追踪数据、实时交互数据、系统日志数据和主观信任量表值。在数据处理阶段,假设并验证了一个动态预测模型,以推导并补全时间序列中缺失的量表数据。最终,通过眼动追踪,使用两层随机森林方法开发了一个用于信任校准的判别回归模型,显示出有效的性能。研究结果表明,该方法可以在现实环境中评估人机协作团队中操作员的信任校准状态,为测量信任校准提供了一种新方法。眼动追踪特征,包括扫视持续时间、注视持续时间和扫视-注视比,对信任校准状态评估有显著影响。